Title :
Image and signal classification for a buried object scanning sonar
Author :
Sternlicht, D.D. ; Thompson, Alan W. ; Lemonds, David W. ; Dikeman, R. David ; Korporaal, Matthew T.
Author_Institution :
Orincon Corp., San Diego, CA, USA
Abstract :
As US expeditionary forces address the threat of asymmetric weapons, greater efforts are being made toward development of mine countermeasure technologies. To locate stealthy buried mines, a unique adaptive acoustic system is being developed that combines image and signal classification algorithms using data collected with a broadband, multiaspect sediment volume imaging sonar. Initial testing of a joint Gaussian Bayesian image classification method is described, for which scalar and statistical features calculated from a selected image region are combined to optimize correct classification probabilities and minimize false alarm rates. Potential targets are identified in the acoustic image and passed to biomimetic signal classification algorithms that map time-frequency patterns into object class declarations. Two-category classification results are reported for a buried mine shape and clutter objects.
Keywords :
Bayes methods; Gaussian processes; clutter; feature extraction; image classification; landmine detection; military equipment; sonar imaging; statistical analysis; Gaussian Bayesian image classification; US expeditionary forces; adaptive acoustic system; asymmetric weapons; broadband aspect sediment volume imaging sonar; buried mine location; buried mine shape; buried object scanning sonar; classification probability; clutter objects; image classification algorithms; image region; mine countermeasure technologies; multiaspect sediment volume imaging sonar; scalar features; signal classification algorithms; statistical features; time-frequency patterns; Acoustic imaging; Acoustic testing; Adaptive systems; Bayesian methods; Buried object detection; Classification algorithms; Pattern classification; Sediments; Sonar; Weapons;
Conference_Titel :
OCEANS '02 MTS/IEEE
Print_ISBN :
0-7803-7534-3
DOI :
10.1109/OCEANS.2002.1193317